English

Using Visual Text Mining to Support the Study Selection Activity in Systematic Literature Reviews

Software Engineering 2021-02-08 v1

Abstract

Background: A systematic literature review (SLR) is a methodology used to aggregate all relevant existing evidence to answer a research question of interest. Although crucial, the process used to select primary studies can be arduous, time consuming, and must often be conducted manually. Objective: We propose a novel approach, known as 'Systematic Literature Review based on Visual Text Mining' or simply SLR-VTM, to support the primary study selection activity using visual text mining (VTM) techniques. Method: We conducted a case study to compare the performance and effectiveness of four doctoral students in selecting primary studies manually and using the SLR-VTM approach. To enable the comparison, we also developed a VTM tool that implemented our approach. We hypothesized that students using SLR-VTM would present improved selection performance and effectiveness. Results: Our results show that incorporating VTM in the SLR study selection activity reduced the time spent in this activity and also increased the number of studies correctly included. Conclusions: Our pilot case study presents promising results suggesting that the use of VTM may indeed be beneficial during the study selection activity when performing an SLR.

Keywords

Cite

@article{arxiv.2102.02934,
  title  = {Using Visual Text Mining to Support the Study Selection Activity in Systematic Literature Reviews},
  author = {Katia Romero Felizardo and Norsaremah Salleh and Rafael M. Martins and Emília Mendes and Stephen G. MacDonell and José Carlos Maldonado},
  journal= {arXiv preprint arXiv:2102.02934},
  year   = {2021}
}

Comments

Conference paper, 11 pages, 1 table, 6 figures

R2 v1 2026-06-23T22:51:29.799Z